#### Measuring support for liberal democracy
#### Code for revised draft of paper
#### Hungarian sample
#### Version 5 - February 2024

library(tidyverse)
library(psych)
library(lavaan)
library(car)
library(semTable)
library(psychTools)
library(tth)
library(haven)
library(RColorBrewer)
library(matrixStats)

# read data
hu_dat = read_spss("Democracy Survey Hungary.sav")
names(hu_dat)
summary(hu_dat$suly_1000)

# items
labelled::var_label(hu_dat)

sd17 = hu_dat[, 27:44]
nam.sd = c("FREXP1", "FREXP2", "FRASSC2", "FRASSC3", "EQLAW1", "EQLAW2", "FRASSC1", "UNISUFF1", 
           "UNISUFF2", "FRELECT1", "FRELECT2", "JUDCNSTR2", "DECELEC1_1", "DECELEC1_2", "DECELEC2_1", 
           "JUDCNSTR1", "LEGCNSTR1", "LEGCNSTR2")
names(sd17) = nam.sd
sapply(sd17, table, useNA="ifany")


## Plot distributions

# colour palettes
lik5 = c(brewer.pal(5, "BrBG"), "#b4b1b1")
lik5_labs = c("StrAg", "SomeAg", "Neither", "SomeDis",
              "StrDis", "DK")
qual5 = c(brewer.pal(5, "Dark2"), "#b4b1b1")

# reorder items
sd_dat = sd17[, c(1, 2, 7, 3, 4, 8, 9, 15, 10, 11, 16, 12, 17, 18, 5, 6)]
sd_dat = as.data.frame(lapply(sd_dat, as.numeric))
names(sd_dat) = c("FREXP1", "FREXP2", "FRASSC1", "FRASSC2", "FRASSC3", "UNISUFF1", "UNISUFF2", 
                  "DECELEC2", "FRELECT1", "FRELECT2", "JUDCNSTR1", "JUDCNSTR2", 
                  "LEGCNSTR1", "LEGCNSTR2", "EQLAW1", "EQLAW2")

#  recode missing values as NAs; change "miss" to the missing code
sd_plot = as.data.frame(lapply(sd_dat, function(x) {
  car::recode(x, "1='StrAg'; 2='SomeAg'; 3='Neither'; 4='SomeDis'; 5='StrDis'; 99='DK'",
              as.factor=TRUE) 
  }))
sd_plot = as.data.frame(lapply(sd_plot, function(x) factor(x, levels = lik5_labs)))

# plot
pdf("supdem_distr_hungary.pdf", height=6.4, width=6)
par(mfrow=c(4, 4), mar=c(3, 2, 0.5, 0.5), tcl=-0.2, cex=0.9, las=2, mgp=c(1.8, 0.9, 0))
for(i in 1:length(sd_plot)) {
  barplot(height = table(sd_plot[, names(sd_plot)[i]]) / dim(sd_plot)[1] * 100, names.arg=lik5_labs, 
          axes=FALSE, col=lik5, cex.names=0.7, mgp=c(1, 0.2, 0), ylim=c(0, 80))
  axis(side=2, labels=TRUE, cex.axis=0.7, mgp=c(1, 0.4, 0))
  text(x=1.5, y=75, names(sd_plot)[i], cex=0.8, adj=0)
}
dev.off()


## Recode to orient all items in a pro-democratic direction and DKs as "neither"
sd_dat_r = sd_dat
dem_vnam = c("FREXP1", "FRASSC2", "UNISUFF2", "DECELEC2", "FRELECT1", "JUDCNSTR1", "LEGCNSTR2", "EQLAW2")
aut_vnam = c("FREXP2", "FRASSC1", "FRASSC3", "UNISUFF1", "FRELECT2", "JUDCNSTR2", "LEGCNSTR1", "EQLAW1")
sd_dat_r[, dem_vnam] = lapply(sd_dat[, dem_vnam], car::Recode, "1=5; 2=4; 3=3; 4=2; 5=1; 99=3")
sd_dat_r[, aut_vnam] = lapply(sd_dat[, aut_vnam], car::Recode, "1=1; 2=2; 3=3; 4=4; 5=5; 99=3")
hu_dat[, dem_vnam] = sd_dat_r[, dem_vnam]
hu_dat[, aut_vnam] = sd_dat_r[, aut_vnam]


## Reliability and dimensionality

# alpha
sd_cor = cor(sd_dat_r, use="pair")
psych::alpha(sd_cor)
alph_out <- psych::alpha(sd_cor)
write.csv(alph_out[[1]], file="sd_alpha.csv")

# eigenvalues of principal components
eigen(sd_cor)$values
write.csv(eigen(sd_cor)$values, file="sd_eigen.csv")

# 1-factor EFA
psych::fa(sd_dat_r, nfactors=1)
efa1 = psych::fa(sd_dat_r, nfactors=1)
efa_html = tth(fa2latex(efa1))
writeLines(efa_html, "sd_efa1.html")

# ordinal
sd_pcor = polychoric(sd_dat_r)$rho
write.csv(sd_pcor, "sd_pcormat.csv", row.names=TRUE)
psych::fa(sd_pcor, nfactors=1, n.obs=dim(sd_dat)[1])
efa_ord = psych::fa(sd_pcor, nfactors=1, n.obs=dim(sd_dat)[1])
efa_ord_html = tth(fa2latex(efa_ord))
writeLines(efa_ord_html, "sd_efa1_ord.html")


## cfa models

# liberal democracy factor with orthogonal methods factor

cfa_mod_1 = '
SupLD =~ FREXP1 + FREXP2 + FRASSC1 + FRASSC2 + FRASSC3 + UNISUFF1 + UNISUFF2 
          + DECELEC2 + FRELECT1 + FRELECT2 + JUDCNSTR1 + JUDCNSTR2 
          + LEGCNSTR1 + LEGCNSTR2 + EQLAW1 + EQLAW2
PosVal =~ FREXP1 + FRASSC2 + UNISUFF2 + DECELEC2 + FRELECT1 + JUDCNSTR1 + LEGCNSTR2 + EQLAW2
'
sd_cfa_1_std = cfa(cfa_mod_1, data=hu_dat, estimator="MLR", orthogonal=TRUE, std.lv=TRUE, 
                   sampling.weights="suly_1000")
semTable(sd_cfa_1_std, paramSets = c("fits", "loadings", "latentvariances", "latentcovariances"),
         fits=c("chisq", "cfi", "rmsea", "srmr"), columns=c("est", "se", "p"),
         type="html", file="cfa_1fac_std_table_w.html")
sd_cfa_1_std_fit = fitMeasures(sd_cfa_1_std, output = "matrix",
                               fit.measures = c("cfi", "cfi.robust", "rmsea", "rmsea.robust", "srmr"))
write.csv(sd_cfa_1_std_fit, file = "cfa_1fac_std_fit_w.csv", row.names = TRUE)

# liberal democracy factor with orthogonal methods factor, ordinal

sd_cfa_1_std = cfa(cfa_mod_1, data=hu_dat, estimator="WLSMV", orthogonal=TRUE, ordered=TRUE, std.lv=TRUE)
summary(sd_cfa_1_std, fit.measures=TRUE)
semTable(sd_cfa_1_std, paramSets = c("fits", "loadings", "latentvariances", "latentcovariances"),
         fits=c("chisq", "cfi", "rmsea", "srmr"), columns=c("est", "se", "p"), 
         type="html", file="cfa_1fac_ord_std_table.html")
sd_cfa_1_std_fit = fitMeasures(sd_cfa_1_std,  output = "matrix",
                               fit.measures = c("cfi", "cfi.robust", "rmsea", "rmsea.robust", "srmr"))
write.csv(sd_cfa_1_std_fit, file = "cfa_1fac_std_ord_fit.csv", row.names = TRUE)

# electoral democracy and rule of laws factors with orthogonal methods factor

cfa_mod_2 = '
SupED =~ FREXP1 + FREXP2 + FRASSC1 + FRASSC2 + FRASSC3 + UNISUFF1 + UNISUFF2 
          + DECELEC2 + FRELECT1 + FRELECT2
SupRL =~  JUDCNSTR1 + JUDCNSTR2 + LEGCNSTR1 + LEGCNSTR2 + EQLAW1 + EQLAW2
PosVal =~ FREXP1 + FRASSC2 + UNISUFF2 + DECELEC2 + FRELECT1 + JUDCNSTR1 + LEGCNSTR2 + EQLAW2
PosVal ~~ 0*SupED
PosVal ~~ 0*SupRL
'
sd_cfa_2_std = cfa(cfa_mod_2, data=hu_dat, estimator="MLR", std.lv=TRUE,
                   sampling.weights="suly_1000")
semTable(sd_cfa_2_std, paramSets = c("fits", "loadings", "latentvariances", "latentcovariances"),
         fits=c("chisq", "cfi", "rmsea", "srmr"), columns=c("est", "se", "p"),
         type="html", file="cfa_2fac_std_table_w.html")
sd_cfa_2_std_fit = fitMeasures(sd_cfa_2_std, output = "matrix",
                               fit.measures = c("cfi", "cfi.robust", "rmsea", "rmsea.robust", "srmr"))
write.csv(sd_cfa_2_std_fit, file = "cfa_2fac_std_fit_w.csv", row.names = TRUE)

# electoral democracy and rule of laws factors with orthogonal methods factor

sd_cfa_2_std = cfa(cfa_mod_2, data=hu_dat, estimator="WLSMV", ordered=TRUE, std.lv=TRUE)
summary(sd_cfa_2_std, fit.measures=TRUE)
semTable(sd_cfa_2_std, paramSets = c("fits", "loadings", "latentvariances", "latentcovariances"),
         fits=c("chisq", "cfi", "rmsea", "srmr"), columns=c("est", "se", "p"), 
         type="html", file="cfa_2fac_ord_std_table.html")
sd_cfa_2_std_fit = fitMeasures(sd_cfa_2_std, output = "matrix",
                               fit.measures = c("cfi", "cfi.robust", "rmsea", "rmsea.robust", "srmr"))
write.csv(sd_cfa_2_std_fit, file = "cfa_2fac_std_ord_fit.csv", row.names = TRUE)

# lr test - 1 v 2-fac models

lavTestLRT(sd_cfa_1_std, sd_cfa_2_std, method = "satorra.bentler.2010")
write.csv(lavTestLRT(sd_cfa_2_std, sd_cfa_1_std, method = "satorra.bentler.2010"), 
          file = "lrtest_cfas.csv", row.names = TRUE)


## Trimmed 7-item scale

sd_dat_7 = sd_dat_r[, c("FREXP2", "FRASSC1", "UNISUFF1", "FRELECT2", "JUDCNSTR2", "LEGCNSTR1", "EQLAW1")]

# 1-factor CFA

cfa_mod_7i = 'SupLD =~ FREXP2 + FRASSC1 + UNISUFF1 + FRELECT2 + JUDCNSTR2 + LEGCNSTR1 + EQLAW1'

sd_cfa_7i_std = cfa(cfa_mod_7i, data=hu_dat, estimator="MLR", std.lv=TRUE,
                    sampling.weights="suly_1000")
summary(sd_cfa_7i_std, fit.measures=TRUE)
semTable(sd_cfa_7i_std, paramSets = c("fits", "loadings", "latentvariances", "latentcovariances"),
         fits=c("chisq", "cfi", "rmsea", "srmr"), columns=c("est", "se", "p"),
         type="html", file="cfa_7it_std_table_w.html")
sd_cfa_7i_fit = fitMeasures(sd_cfa_7i_std, output = "matrix",
                            fit.measures = c("cfi", "cfi.robust", "rmsea", "rmsea.robust", "srmr"))
write.csv(sd_cfa_7i_fit, file = "cfa_7it_std_fit_w.csv", row.names = TRUE)

# 1-factor CFA, ordinal

sd_cfa_7i_ord = cfa(cfa_mod_7i, data=hu_dat, estimator="WLSMV", ordered=TRUE, std.lv=TRUE)
summary(sd_cfa_7i_ord, fit.measures=TRUE)
semTable(sd_cfa_7i_ord, paramSets = c("fits", "loadings", "latentvariances", "latentcovariances"),
         fits=c("chisq", "cfi", "rmsea", "srmr"), columns=c("est", "se", "p"),
         type="html", file="cfa_7it_ord_std_table.html")
sd_cfa_7i_fit = fitMeasures(sd_cfa_7i_ord, output = "matrix",
                            fit.measures = c("cfi", "cfi.robust", "rmsea", "rmsea.robust", "srmr"))
write.csv(sd_cfa_7i_fit, file = "cfa_7it_ord_std_fit.csv", row.names = TRUE)

# eigenvalues of 7-item scale
sd7_cor = cor(sd_dat_7, use="pair")
eigen(sd7_cor)$values
write.csv(eigen(sd7_cor)$values, file="sd7_eigen.csv")

# reliability of 7-item scale
psych::alpha(sd7_cor)
alph7_out <- psych::alpha(sd7_cor)
write.csv(alph7_out[[1]], file="sd7_alpha.csv")

# ordinal reliability
sd7_pcor = polychoric(sd_dat_7)$rho
alph7_ord_out <- psych::alpha(sd7_pcor)
write.csv(alph7_ord_out[[1]], file="sd7_ord_alpha.csv")

# create additive 7-item scale
sd_dat$SUPDEM_7IT = rowMeans(sd_dat_7)


## Correlations with criterion variables

# Select and recode variables

hu_dat$SUPDEM_7IT = sd_dat$SUPDEM_7IT

table(hu_dat$K6_2, useNA="ifany")
hu_dat$SATIS_DEM = hu_dat$K6_2

table(hu_dat$K6_4, useNA="ifany")
hu_dat$GOVT_APPROV = hu_dat$K6_4

table(hu_dat$K21_1, useNA="ifany")
hu_dat$LR_IDEOL = hu_dat$K21_1

table(hu_dat$K22_1, useNA="ifany")
pop_dat = hu_dat[, which(colnames(hu_dat)=="K22_1"):which(colnames(hu_dat)=="K22_6")]
pop_dat = data.frame(sapply(pop_dat, function(x) car::recode(x, "1=5; 2=4; 3=3; 4=2; 5=1; 99=3")))
psych::alpha(pop_dat)
pop_dat$POP_ATT = rowMeans(pop_dat)
hu_dat$POP_ATT = pop_dat$POP_ATT

## create and save mixed correlation matrix

cor_items = c("SUPDEM_7IT", "SATIS_DEM", "GOVT_APPROV", "LR_IDEOL", "POP_ATT")
crit_cor = mixedCor(hu_dat[, cor_items])$rho
write.csv(crit_cor, file="sd7_crit_cormat.csv")
